Deep Learning Based Car Damage Detection, Classification and Severity

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Abstract

In the accident insurance industry, settling the claim is a time-consuming process since it is a manual process and there is a gap between the optimal and the actual settlement. Using deep learning models, we are not only trying to speed up the process but also provide better customer service and increase the profitability of insurance companies. In this paper we are using various pretrained models such as VGG 16, VGG 19, Resnet50 and Densenet and based on these models, selecting the best performing models. We initially check whether the car is damaged or not using the Resnet50 model and if it’s a damaged one we use the WPOD-net model to detect the license plate. To identify the damaged region, we use the YOLO model. At last, comes the damage severity which is implemented using the Densenet model. After implementing various models, we find out that transfer learning gives better results than fine-tuning. In addition to that we propose a framework that integrates all of this into one application and in turn helps in the automation of the insurance industry
基于深度学习的汽车损伤检测、分类和严重程度
在意外险行业,理赔是一个耗时的过程,因为这是一个人工过程,而且最佳理赔与实际理赔之间存在差距。使用深度学习模型,我们不仅试图加快这一过程,而且还提供更好的客户服务,提高保险公司的盈利能力。在本文中,我们使用了各种预训练模型,如VGG 16, VGG 19, Resnet50和Densenet,并在这些模型的基础上选择了表现最好的模型。我们首先使用Resnet50模型检查汽车是否损坏,如果是损坏的,我们使用WPOD-net模型检测车牌。为了识别受损区域,我们使用了YOLO模型。最后给出了用Densenet模型实现的损伤严重程度。在实现了各种模型后,我们发现迁移学习比微调有更好的效果。除此之外,我们还提出了一个框架,将所有这些集成到一个应用程序中,从而有助于保险业的自动化
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